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Variable selection for robust model-based learning from contaminated data = Selezione di variabili nella stima robusta di modelli per dati contaminati

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Several contributions to the recent literature have shown that supervised learning is greatly enhanced when only the most relevant features are selected for building the discrimination rule. Unfortunately, outliers and wrongly labelled units may undermine the determination of relevant predictors, and almost no dedicated methodologies have been developed to face this issue. In the present paper, we in- troduce a new robust variable selection approach, that embeds a classifier within a greedy-forward procedure. An experiment on synthetic data is provided, to under- line the benefits of the proposed method in comparison with non-robust solutions.
Original languageEnglish
Title of host publicationBook of Short Papers SIS 2020
Pages1117-1122
Number of pages6
Publication statusPublished - 2020
Event50th Scientific Meeting of the Italian Statistical Society - Pisa
Duration: 22 Jun 202024 Jun 2020

Conference

Conference50th Scientific Meeting of the Italian Statistical Society
CityPisa
Period22/6/2024/6/20

Keywords

  • Variable Selection
  • Model-Based Classification
  • Label Noise
  • Robust Estimation
  • Wrapper approach
  • Impartial Trimming
  • Outliers Detection

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